EDAMS: An Encoder-Decoder Architecture for Multi-grasp Soft Sensing Object Recognition

Oliver Shorthose, A. Albini, Luca Scimeca, Liang He, P. Maiolino
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Abstract

The use of tactile sensing exhibits benefits over visual detection as it can be deployed in occluded environments and can provide deeper information about an object's material properties. Soft hands have increasingly been used for tactile object identification, providing a high degree of adaptability without requiring complex control schemes. In this work, we propose a framework for identifying a range of objects in any pose by exploiting the compliance of a soft hand equipped with distributed tactile sensing. We propose EDAMS, an Encoder-Decoder Architecture for Multi-grasp Soft sensing and an ad-hoc data structure capable of encoding information on multiple grasps, while decoupling the dependency on the pose order. We train the model to map the high-dimensional multi-grasp tactile sensor data into a lower-dimensional latent space capable of achieving the geometrical separation of each object class, and enabling accurate object classification. We provide an empirical analysis of the benefit of multi-grasp perception for object identification, and show its impact on the separation of the objects in sensor space. Notably, we find the classification accuracy to change widely across the number of grasps, ranging from 47.0% for a single grasp, to 99.9% for 10 grasps.
EDAMS:一种多抓取软测量目标识别的编码器-解码器结构
与视觉检测相比,使用触觉检测更有优势,因为它可以在闭塞的环境中部署,并且可以提供有关物体材料属性的更深入信息。柔软的手越来越多地用于触觉对象识别,提供了高度的适应性,而不需要复杂的控制方案。在这项工作中,我们提出了一个框架,通过利用配备分布式触觉传感的柔软手的顺应性来识别任何姿势的一系列物体。我们提出了EDAMS,一种用于多抓取软检测的编码器-解码器架构和一种能够对多个抓取信息进行编码的自适应数据结构,同时解耦了对姿态顺序的依赖。我们训练模型将高维多抓触觉传感器数据映射到能够实现每个物体类别几何分离的低维潜在空间,从而实现准确的物体分类。我们对多抓取感知对目标识别的好处进行了实证分析,并展示了其对传感器空间中目标分离的影响。值得注意的是,我们发现分类准确率在抓取次数上变化很大,从单个抓取的47.0%到10个抓取的99.9%不等。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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